Skip to main content

AI Agent Governance Scanner — local-only CLI that scores governance posture across 17 dimensions

Project description

Warden — AI Agent Governance Scanner

PyPI version License: MIT Python 3.10+

Open-source, local-only CLI scanner that evaluates AI agent governance posture across 12 scan layers and 17 dimensions. Scans code patterns, MCP configs, infrastructure, secrets, agent architecture, dependencies, audit compliance, CI/CD pipelines, IaC security, framework-specific governance, multi-language code, and cloud AI services. No data leaves the machine.

Website: sharkrouter.ai · PyPI: warden-ai

Quick Start

# With uv (zero setup, one-shot — recommended)
uvx --from warden-ai warden scan /path/to/your-agent-project

# With pip
pip install warden-ai
warden scan /path/to/your-agent-project

# Optional extras
pip install 'warden-ai[pdf]'   # adds `--format pdf` (weasyprint)

From zero to governance score in under 60 seconds.

HTML Report

Warden generates a self-contained HTML report with interactive score breakdown, actionable recommendations, and a comparison card — works offline and in air-gapped environments.

Warden HTML Report

What It Does

Warden scores your AI agent project across 17 governance dimensions (out of 235 raw points, normalized to /100):

Group Dimensions
Core Governance (100 pts) Tool Inventory, Risk Detection, Policy Coverage, Credential Management, Log Hygiene, Framework Coverage
Advanced Controls (50 pts) Human-in-the-Loop, Agent Identity, Threat Detection
Ecosystem (55 pts) Prompt Security, Cloud/Platform, LLM Observability, Data Recovery, Compliance Maturity
Unique Capabilities (30 pts) Post-Exec Verification, Data Flow Governance, Adversarial Resilience

Score Levels

Score Level Meaning
>= 80 GOVERNED Comprehensive agent governance in place
>= 60 PARTIAL Significant coverage with material gaps
>= 33 AT_RISK Some controls exist but major blind spots
< 33 UNGOVERNED Minimal or no agent governance

CLI Commands

# Scan a project (generates HTML + JSON + SARIF reports)
warden scan .
warden scan /path/to/project --format json
warden scan /path/to/project --format sarif
warden scan /path/to/project --format pdf       # requires pip install 'warden-ai[pdf]'
warden scan /path/to/project --output-dir /path/to/reports

# Skip specific layers
warden scan . --skip secrets,deps

# Run only specific layers
warden scan . --only code,mcp,cloud

# CI mode: exit code reflects governance level
warden scan . --ci                    # 0=governed, 1=partial, 2=at_risk, 3=ungoverned
warden scan . --min-score 60          # exit 1 if score < 60

# Baseline: track only new findings (brownfield adoption)
warden baseline .                     # saves .warden-baseline.json
warden scan . --baseline .warden-baseline.json  # shows only NEW findings

# Compare two reports
warden diff before.json after.json    # score delta, new/resolved findings

# Auto-fix common findings
warden fix . --dry-run                # preview fixes
warden fix .                          # apply fixes

# View the scoring methodology
warden methodology

# See the market leaderboard (20 vendors x 17 dimensions)
warden leaderboard

Config File (.warden.toml)

Warden reads project-level defaults from .warden.toml or a [tool.warden] table in pyproject.toml. Values apply when the matching CLI flag is left at its default — explicit flags always win.

# .warden.toml — checked into your repo
format = "all"
output_dir = "reports"
skip = ["secrets", "deps"]
only = []
min_score = 60
baseline = ".warden-baseline.json"
ci = true

Or alongside other tooling in pyproject.toml:

[tool.warden]
format = "sarif"
min_score = 70
skip = ["multilang"]

Warden searches upward from the scan path until it finds a config file or hits a VCS root (.git, .hg, .svn). Paths like output_dir and baseline are resolved relative to the config file. Pass --no-config to ignore any discovered config.

GitHub Action

Warden ships as a GitHub Action so every push and PR scores governance posture and publishes findings to Code Scanning.

# .github/workflows/warden.yml
name: Warden governance scan

on:
  push:
    branches: [main]
  pull_request:
    branches: [main]

permissions:
  contents: read
  security-events: write   # required for SARIF upload

jobs:
  warden:
    runs-on: ubuntu-latest
    steps:
      - uses: actions/checkout@v4
      - uses: SharkRouter/warden@v1
        with:
          path: .
          # Optional gates:
          # min-score: 60          # fail the build if score < 60
          # fail-on-level: at_risk # fail if posture is AT_RISK or worse

Key action inputs: path, format (json/html/sarif/all), min-score, fail-on-level, skip, only, baseline, upload-sarif, warden-version, python-version. Outputs: score, raw-score, level, findings-count, critical-count, report-json, report-html, report-sarif. See action.yml for the full interface and .github/workflows/warden-example.yml.sample for a full example workflow.

Layer Keys for --skip / --only

Key Layer
code Code Patterns (Python AST + JS/TS regex)
mcp MCP Server Configs
infra Infrastructure (Docker, K8s)
secrets Secrets & Credentials
agent Agent Architecture
deps Supply Chain / Dependencies
audit Audit & Compliance
cicd CI/CD Governance
iac IaC Security (Terraform, Pulumi, CloudFormation)
frameworks Framework-Specific Governance
multilang Multi-Language Governance (Go, Rust, Java)
cloud Cloud AI Governance (AWS, Azure, GCP)

12 Scan Layers

  1. Code Patterns — AST-based Python + regex JS/TS analysis (unprotected LLM calls, agent loops, unrestricted tool access)
  2. MCP Servers — Config file analysis (write tools without auth, missing schemas, non-TLS transport)
  3. Infrastructure — Dockerfile, docker-compose, K8s manifests (root containers, exposed secrets, missing healthchecks)
  4. Secrets — 15+ credential patterns with value masking (OpenAI, Anthropic, AWS, GitHub, Stripe, etc.)
  5. Agent Architecture — Agent class analysis (no permissions, no cost tracking, unlimited sub-agent spawning)
  6. Supply Chain — Dependency analysis (unpinned AI packages, typosquat detection via Levenshtein distance)
  7. Audit & Compliance — Audit logging, structured logging, retention policies, compliance framework mapping
  8. CI/CD Governance — GitHub Actions analysis (missing approvals, exposed secrets, no branch protection, CODEOWNERS)
  9. IaC Security — Terraform, Pulumi, and CloudFormation analysis (unencrypted storage, open security groups, IAM wildcards, missing remote backend)
  10. Framework Governance — LangChain callbacks, CrewAI guardrails, AutoGen sandboxing, LlamaIndex limits
  11. Multi-Language Governance — Go (context timeouts, unsafe exec), Rust (unsafe blocks, .unwrap() on API calls), Java (Spring AI @Tool auth, audit logging)
  12. Cloud AI Governance — AWS Bedrock guardrails, Azure AI Content Safety, GCP Vertex AI safety settings, managed identity vs hardcoded keys

Plus D17: Adversarial Resilience — 8 sub-checks based on Google DeepMind's "AI Agent Traps" paper (Franklin et al., March 2026).

Scoring Integrity

Warden v1.5+ includes 6 anti-inflation mechanisms to prevent score gaming:

  • Strong/weak pattern tiers — generic matches (e.g., import logging) score 1 point; governance-specific patterns (e.g., audit_log_tamper_proof) score 3
  • Co-occurrence requirements — dimensions like D3 (Policy) and D11 (Cloud/Platform) require 3+ distinct patterns to score, preventing single-keyword inflation
  • Boolean dimension scoring — each dimension scores from code patterns OR absence, never both
  • CRITICAL finding deductions — each CRITICAL finding deducts 2 points (capped at 60% of earned score)
  • MCP absence-vs-compliance fix — "no tools found = no violations" no longer counts as compliant; only inline tool definitions earn credit
  • Positive-signal scoring — clean dependencies and zero secrets earn modest credit (1-3 pts), not full dimension scores; real points require active governance patterns (secrets managers, compliance frameworks, lockfiles)

HTML Report Features

The HTML report is fully self-contained (no CDN, no external fonts, no network requests):

  • Score gauge with per-dimension breakdown bars
  • Summary grid — MCP-focused when MCP tools detected, findings-focused otherwise
  • Discovered tools — MCP tool inventory with risk classification (destructive, financial, exfiltration, write-access, read-only)
  • Governance detection — which governance layers were found in your codebase
  • Recommendations — prioritized remediation steps mapped to compliance frameworks
  • Comparison card — side-by-side score projection with biggest gap dimensions
  • Competitor detection — identifies 20 governance/security tools in your codebase (shown only when detected, requires 2+ signals)
  • Email form — optional report delivery (score metadata only, never source code or secrets)

Output Formats

Format File Description
HTML warden_report.html Self-contained dark-theme report with SVG gauge, expandable findings, benchmark bars
JSON warden_report.json Machine-readable with scoring_version field for CI/CD integration
SARIF warden_report.sarif GitHub Code Scanning compatible — native PR annotations
CLI stdout Colorized terminal output with per-layer timing and progress bars

Language Support

Language Code Patterns Secrets Dependencies Framework-Specific Cloud AI
Python AST Yes pip/poetry/uv LangChain, CrewAI, AutoGen, LlamaIndex Bedrock, Azure AI, Vertex AI
JavaScript/TypeScript Regex Yes npm/yarn/pnpm
Go Regex Yes go.mod context, exec, rate limiting
Rust Regex Yes Cargo.toml tracing, tokio, unsafe blocks
Java Regex Yes Maven/Gradle Spring AI, Spring Security
Terraform HCL regex Provider versions
Pulumi Via TS/PY
CloudFormation YAML/JSON regex

Architecture Constraints

  1. Zero network access — Scanners never import httpx/requests/urllib. CI-enforced.
  2. Zero SharkRouter imports — Standalone package with no internal dependencies. CI-enforced.
  3. Secrets never stored — Only file, line, pattern name, and masked preview (first 3 + last 4 chars).
  4. HTML report self-contained — No CDN, no Google Fonts. Works in air-gapped environments.
  5. 2 runtime dependencies — click + rich. Nothing else.

Development

# With uv (recommended)
uv sync --extra dev
uv run pytest tests/ -v

# With pip
python -m venv .venv
source .venv/bin/activate  # or .venv\Scripts\activate on Windows
pip install -e ".[dev]"
pytest tests/ -v

Known Limitations

  • Static analysis: Warden detects governance patterns, not enforcement. High score = controls present, not proven correct.
  • Framework vocabulary: Scoring is optimized for recognized AI frameworks. Custom frameworks may score lower despite equivalent governance.
  • IaC depth: Terraform has the deepest analysis. Pulumi and CloudFormation checks are regex-based heuristics.
  • Multi-language AST: Go/Rust/Java analysis uses regex, not AST parsing. Fewer patterns detected than Python.
  • Local filesystem scope: Warden scans files on disk, including gitignored files. Secrets in .env files are flagged even if not committed.

See SCORING.md for full methodology details.

License

MIT

Research Citation

Adversarial resilience dimension (D17) cites:

Franklin, Tomasev, Jacobs, Leibo, Osindero. "AI Agent Traps." Google DeepMind, March 2026.

Every D17 finding maps to EU AI Act articles, OWASP LLM Top 10, and MITRE ATLAS techniques.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

warden_ai-1.7.2.tar.gz (316.7 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

warden_ai-1.7.2-py3-none-any.whl (113.8 kB view details)

Uploaded Python 3

File details

Details for the file warden_ai-1.7.2.tar.gz.

File metadata

  • Download URL: warden_ai-1.7.2.tar.gz
  • Upload date:
  • Size: 316.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: uv/0.11.6 {"installer":{"name":"uv","version":"0.11.6","subcommand":["publish"]},"python":null,"implementation":{"name":null,"version":null},"distro":{"name":"Ubuntu","version":"24.04","id":"noble","libc":null},"system":{"name":null,"release":null},"cpu":null,"openssl_version":null,"setuptools_version":null,"rustc_version":null,"ci":true}

File hashes

Hashes for warden_ai-1.7.2.tar.gz
Algorithm Hash digest
SHA256 c01e1688ca14d7cc2702f8b86bfe253368692efb26de7c75c468f62c8f840931
MD5 3c62bd5cb02f9ab8c3594816302fcbc6
BLAKE2b-256 6dce580def613c2eb3a8ec30489ea0fdac5633061a669711e96aee70b342ce6c

See more details on using hashes here.

File details

Details for the file warden_ai-1.7.2-py3-none-any.whl.

File metadata

  • Download URL: warden_ai-1.7.2-py3-none-any.whl
  • Upload date:
  • Size: 113.8 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: uv/0.11.6 {"installer":{"name":"uv","version":"0.11.6","subcommand":["publish"]},"python":null,"implementation":{"name":null,"version":null},"distro":{"name":"Ubuntu","version":"24.04","id":"noble","libc":null},"system":{"name":null,"release":null},"cpu":null,"openssl_version":null,"setuptools_version":null,"rustc_version":null,"ci":true}

File hashes

Hashes for warden_ai-1.7.2-py3-none-any.whl
Algorithm Hash digest
SHA256 e433b5a7808b82fce32aebb33322e86d6ce2e1aa5418f0f1ee3aeabe49478656
MD5 f8508057bab32ff0de571e966c80ce29
BLAKE2b-256 672986124db995c0f45cf00755f09374804817690e875d08c0e54cf992d10dec

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page